<?xml version="1.0" encoding="UTF-8"?>
<!--Generated at Mon, 20 Apr 2026 02:44:14 +0200-->
<rss version="2.0">
 <channel>
  <title>[elecena] Luxonis Oak-1 DepthAI Hardware - zmiany ceny</title>
  <description>The Oak-1 is an all-in-one machine vision solution. It’s a 4-trillion-operations-per-second AI powerhouse that performs your AI models on-board, so that your host is free to do whatever you need it to do.

Its integrated 12 MegaPixel camera module communicates over an on-board 2.1 Gbps MIPI interface directly to the Myriad X, which ingests this data and performs neural inference on it, returning the results over USB.

Such a data path offloads the host processor from all of this work. In the common use case of object detection from a 12MP image, this means your host is now dealing with a 24 Kbps stream of what the objects are and where they are in the image, instead of a 2.1 Gbps stream of video. So an 87,500 reduction in data your host has to deal with.

And such a reduction means that even on relatively-slow hosts, one can use dozens of Luxonis OAK-1 without burdening the host CPU.

As an example, below is an example of running MobileNet-SSD:

OAK-1 + Raspberry Pi: 50+FPS, 0% RPi CPU Utilization

NCS2 + Raspberry Pi: 8FPS, 225% CPU Utilization</description>
  <item>
   <title>Luxonis Oak-1 DepthAI Hardware - 149.95 USD</title>
   <link>https://elecena.pl/product/18669025/luxonis-oak-1-depthai-hardware</link>
   <pubDate>2021-06-05</pubDate>
  </item>
  <item>
   <title>Luxonis Oak-1 DepthAI Hardware - 160.50 USD</title>
   <link>https://elecena.pl/product/18669025/luxonis-oak-1-depthai-hardware</link>
   <pubDate>2022-02-22</pubDate>
  </item>
  <item>
   <title>Luxonis Oak-1 DepthAI Hardware - 149.95 USD</title>
   <link>https://elecena.pl/product/18669025/luxonis-oak-1-depthai-hardware</link>
   <pubDate>2023-10-27</pubDate>
  </item>
  <item>
   <title>Luxonis Oak-1 DepthAI Hardware - 123.32 USD</title>
   <link>https://elecena.pl/product/18669025/luxonis-oak-1-depthai-hardware</link>
   <pubDate>2024-08-21</pubDate>
  </item>
 </channel>
</rss>
